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Gibbs-sampling-based optimization for the deployment of small cells in 3G heterogeneous networks

机译:基于吉布斯采样的优化,可在3G异构网络中部署小型小区

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The growing popularity of mobile data services has placed great demands for wireless cellular networks to support higher throughput. One way to meet the rapidly growing traffic demand is through heterogeneous network (HetNet) deployment, which uses a mixture of macro cells and small cells (also known as micro- or pico-cells) to further enhance the spatial reuse and thus improves network throughput. In this paper, we propose a Gibbs-sampling based optimization method for the deployment of small cells in 3G networks. To our best knowledge, this work is the first to optimize the locations of multiple small cells with the goal of maximizing a given network utility function. The Gibbs sampling based (GSB) method intelligently balances two potentially conflicting considerations: (i) placing small cells close to congested areas; and (ii) minimizing interference with the existing macro cells and other small cells. We also describe two low-complexity algorithms, the greedy EcNo and the greedy hotspot algorithms. Both algorithms are widely used in industry and will be used as the performance benchmark. Extensive simulations have been conducted based on real traffic traces from the 3G data network. The numerical results show that the GSB placement leads to 10% higher throughput and 30% higher off-loading factor than the greedy solutions. Since the cost of deploying small nodes could be expensive and each city may need a large number of small nodes, the proposed results represent significant cost savings compared to greedy solutions.
机译:移动数据服务的日益普及对无线蜂窝网络提出了更高的要求,以支持更高的吞吐量。满足快速增长的流量需求的一种方法是通过异构网络(HetNet)部署,该技术使用宏小区和小型小区(也称为微型小区或微微小区)的混合物来进一步增强空间复用性,从而提高网络吞吐量。在本文中,我们提出了一种基于Gibbs采样的优化方法,用于3G网络中小型小区的部署。据我们所知,这项工作是首次优化多个小型小区的位置,目的是最大化给定的网络实用功能。基于吉布斯采样(GSB)的方法可以智能地平衡两个潜在冲突的考虑因素:(i)将小型小区放置在拥挤的区域附近; (ii)最小化对现有宏小区和其他小型小区的干扰。我们还描述了两种低复杂度的算法,贪婪的EcNo和贪婪的热点算法。两种算法都在工业中广泛使用,并将用作性能基准。已经基于来自3G数据网络的真实流量跟踪进行了广泛的仿真。数值结果表明,与贪婪的解决方案相比,GSB的放置使吞吐量提高了10%,卸载因子提高了30%。由于部署小节点的成本可能很高,并且每个城市可能需要大量的小节点,因此与贪婪的解决方案相比,建议的结果可节省大量成本。

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